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I am reading a file containing single precision data with 512**3 data points. Based on a threshold, I assign each point a flag of 1 or 0. I wrote two programs doing the same thing, one in fortran, the other in python. But the one in fortran takes like 0.1 sec while the one in python takes minutes. Is it normal? Or can you please point out the problem with my python program:

fortran.f

  program vorticity_tracking

  implicit none

  integer, parameter :: length = 512**3
  integer, parameter :: threshold = 1320.0

  character(255) :: filen
  real, dimension(length) :: stored_data
  integer, dimension(length) :: flag
  integer index

  filen = "vor.dat"

  print *, "Reading the file ", trim(filen)
  open(10, file=trim(filen),form="unformatted",
 &     access="direct", recl = length*4)
  read (10, rec=1) stored_data
  close(10)

  do index = 1, length
     if (stored_data(index).ge.threshold) then
        flag(index) = 1
     else
        flag(index) = 0
     end if
  end do

  stop
  end program

Python file:

#!/usr/bin/env python

import struct
import numpy as np

f_type = 'float32'
length = 512**3
threshold = 1320.0
file = 'vor_00000_455.float'

f = open(file,'rb')
data = np.fromfile(f, dtype=f_type, count=-1)
f.close()

flag = []

for index in range(length):
    if (data[index] >= threshold):
        flag.append(1)
    else:
        flag.append(0)

********* Edit ******

Thanks for your comments. I am not sure then how to do this in fortran. I tried the following but this is still as slow.

 flag = np.ndarray(length, dtype=np.bool)    
 for index in range(length):
     if (data[index] >= threshold):
         flag[index] = 1
     else:
         flag[index] = 0

Can anyone please show me?

share|improve this question
2  
Have you tried preallocate your flag []? I.e. using np.ndarray(512**3, dtype=np.bool) instead of list. Array have a random access, so you need O(1) time to access (and O(n) for whole cycle), while with list you need O(n) for 1 element (and O(n**2) at all). –  Alexander Mihailov Jun 26 '13 at 8:10
1  
This is normal. Python is generally much slower (but much more flexible) than a compiled language like Fortran. For such calculations you can try advanced functions of numpy (but I'm the wrong to ask about details). –  Michael Butscher Jun 26 '13 at 8:11
    
@AlexanderMihailov thanks for the comment. But I am not sure how to implement your suggestion. I have edited my post to illustrate what I tried, but it has not changed the performance. –  jhaprade Jun 26 '13 at 8:42
    
I advice you to have caution on what you are trying to do. Of course you can always optimize python code to the extreme (and in the extreme it will never be as fast as Fortran --- that's another question if you want to know why). But at those extreme points ... you lose a lot of the advantage of using python in the first place; its language paradigms are there to make code more expressive in its own unique ways. when you fight the way that the language was designed to be used you should be thinking about using other languages that are designed specifically with your needs in mind. –  Justin L. Jun 27 '13 at 22:53

3 Answers 3

up vote 3 down vote accepted

In general Python is an interpreted language while Fortran is a compiled one. Therefore you have some overhead in Python. But it shouldn't take that long.

One thing that can be improved in the python version is to replace the for loop by an index operation.

#create flag filled with zeros with same shape as data
flag=numpy.zeros(data.shape)
#get bool array stating where data>=threshold
barray=data>=threshold
#everywhere where barray==True put a 1 in flag
flag[barray]=1

shorter version:

#create flag filled with zeros with same shape as data
flag=numpy.zeros(data.shape)
#combine the two operations without temporary barray
flag[data>=threshold]=1
share|improve this answer
    
Thanks, this works extremely well. Can you please explain me one thing. Why is "flag[data>=threshold]=1" so much more faster than if I write a loop like "for i in range(length): if (data[i]>=threshold): flag[i]=1"? –  jhaprade Jun 26 '13 at 10:34
    
I really don't know, so I can only guess. I think there are two reasons. Numpy uses a lot of c code and it uses vectorization. –  dlangenk Jun 27 '13 at 7:53

Your two programs are totally different. Your Python code repeatedly changes the size of a structure. Your Fortran code does not. You're not comparing two languages, you're comparing two algorithms and one of them is obviously inferior.

share|improve this answer
    
+1: You actually read the code ! –  High Performance Mark Jun 26 '13 at 8:20
    
Thank you for the comment @David but I am not sure how to go about doing this in python. Any tips? –  jhaprade Jun 26 '13 at 8:43

Try this for python:

flag = data > threshhold

It will give you an array of flags as you want.

share|improve this answer
    
ok, let me try this solution –  jhaprade Jun 26 '13 at 8:49

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